Email has become an indispensable communication tool in daily life. However, high volumes of spam waste resources, interfere with productivity, and present severe threats to computer system security and personal privacy. This book introduces research on anti-spam techniques based on the artificial immune system (AIS) to identify and filter spam. It provides a single source of all anti-spam models and algorithms based on the AIS that have been proposed by the author for the past decade in various journals and conferences.Inspired by the biological immune system, the AIS is an adaptive system based on theoretical immunology and observed immune functions, principles, and models for problem solving. Among the variety of anti-spam techniques, the AIS has been highly effective and is becoming one of the most important methods to filter spam. The book also focuses on several key topics related to the AIS, including:Extraction methods inspired by various immune principlesConstruction approaches based on several concentration methods and modelsClassifiers based on immune danger theoryThe immune-based dynamic updating algorithmImplementing AIS-based spam filtering systemsThe book also includes several experiments and comparisons with state-of-the-art anti-spam techniques to illustrate the excellent performance AIS-based anti-spam techniques.Anti-Spam Techniques Based on Artificial Immune System gives practitioners, researchers, and academics a centralized source of detailed information on efficient models and algorithms of AIS-based anti-spam techniques. It also contains the most current information on the general achievements of anti-spam research and approaches, outlining strategies for designing and applying spam-filtering models.
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Anti-Spam Technologies. Artificial Immune System. Term Space Partition-Based Feature Construction Approach. Immune Concentration-Based Feature Construction Approach. Local Concentration-Based Feature Extraction Approach. Multi-Resolution Concentration-Based Feature Construction Approach. Adaptive Concentration Selection Model. Variable Length Concentration-Based Feature Construction Method. Parameter Optimization of Concentration-Based Feature Construction Approaches. Immune Danger Theory-Based Ensemble Method. Immune Danger Zone Principle-Based Dynamic Learning Method. Immune-Based Dynamic Updating Algorithm. AIS-Based Spam Filtering System and Implementation.
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Produktdetaljer

ISBN
9781498725187
Publisert
2015-12-01
Utgiver
Vendor
CRC Press Inc
Vekt
521 gr
Høyde
234 mm
Bredde
156 mm
Aldersnivå
P, 06
Språk
Product language
Engelsk
Format
Product format
Innbundet
Antall sider
264

Forfatter

Om bidragsyterne

Ying Tan, PhD, is a full professor and PhD advisor in the School of Electronics Engineering and Computer Science at Peking University, China. He is also director of the Computational Intelligence Laboratory at Peking University. He received his PhD from Southeast University in Nanjing, China. His research interests include computational intelligence, swarm intelligence, data mining, machine learning, fireworks algorithm, and intelligent information processing for information security. He has published more than 280 papers, has authored or coauthored six books and more than 10 book chapters, and holds three invention patents. He is editor in chief of the International Journal of Computational Intelligence and Pattern Recognition and is an associate editor of IEEE Transactions on Cybernetics and IEEE Transactions on Neural Networks and Learning Systems. He is the general chair of the ICSI–CCI 2015 joint conference and ICSI series conference and is a senior member of the IEEE.